Artificial Intelligence Technology analysis using Artificial
Intelligence patent through Deep Learning model and vector space model
- URL: http://arxiv.org/abs/2111.11295v1
- Date: Mon, 8 Nov 2021 00:10:49 GMT
- Title: Artificial Intelligence Technology analysis using Artificial
Intelligence patent through Deep Learning model and vector space model
- Authors: Yongmin Yoo, Dongjin Lim, Kyungsun Kim
- Abstract summary: We propose a method for keyword analysis within factors using artificial intelligence patent data sets for artificial intelligence technology analysis.
A case study of collecting and analyzing artificial intelligence patent data was conducted to show how the proposed model can be applied to real world problems.
- Score: 0.1933681537640272
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Thanks to rapid development of artificial intelligence technology in recent
years, the current artificial intelligence technology is contributing to many
part of society. Education, environment, medical care, military, tourism,
economy, politics, etc. are having a very large impact on society as a whole.
For example, in the field of education, there is an artificial intelligence
tutoring system that automatically assigns tutors based on student's level. In
the field of economics, there are quantitative investment methods that
automatically analyze large amounts of data to find investment laws to create
investment models or predict changes in financial markets. As such, artificial
intelligence technology is being used in various fields. So, it is very
important to know exactly what factors have an important influence on each
field of artificial intelligence technology and how the relationship between
each field is connected. Therefore, it is necessary to analyze artificial
intelligence technology in each field. In this paper, we analyze patent
documents related to artificial intelligence technology. We propose a method
for keyword analysis within factors using artificial intelligence patent data
sets for artificial intelligence technology analysis. This is a model that
relies on feature engineering based on deep learning model named KeyBERT, and
using vector space model. A case study of collecting and analyzing artificial
intelligence patent data was conducted to show how the proposed model can be
applied to real world problems.
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